Harmonization-guided deep residual network for imputing under clouds with multi-sensor satellite imagery

Xian Yang, Yifan Zhao, Ranga Raju Vatsavai
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Abstract

Multi-sensor spatiotemporal satellite images have become crucial for monitoring the geophysical characteristics of the Earth’s environment. However, clouds often obstruct the view from the optical sensors mounted on satellites and therefore degrade the quality of spectral, spatial, and temporal information. Though cloud imputation with the rise of deep learning research has provided novel ways to reconstruct the cloud-contaminated regions, many learning-based methods still lack the capability of harmonizing the differences between similar spectral bands across multiple sensors. To cope with the inter-sensor inconsistency of overlapping bands in different optical sensors, we propose a novel harmonization-guided residual network to impute the areas under clouds. We present a knowledge-guided harmonization model that maps the reflectance response from one satellite collection to another based on the spectral distribution of the cloud-free pixels. The harmonized cloud-free image is subsequently exploited in the intermediate layers as an additional input, paired with a custom loss function that considers image reconstruction quality and inter-sensor consistency jointly during training. To demonstrate the performance of our model, we conducted extensive experiments on a multi-sensor remote sensing imagery benchmark dataset consisting of widely used Landsat-8 and Sentinel-2 images. Compared to the state-of-the-art methods, results show at least a 22.35% improvement in MSE.
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基于协调制导的多传感器卫星云图深度残差网络
多传感器时空卫星图像已成为监测地球环境地球物理特征的关键。然而,云层经常阻挡卫星上光学传感器的视野,因此降低了光谱、空间和时间信息的质量。尽管随着深度学习研究的兴起,云插值为重建云污染区域提供了新的方法,但许多基于学习的方法仍然缺乏协调多个传感器相似光谱波段之间差异的能力。为了解决不同光学传感器间重叠波段不一致的问题,提出了一种新的协调制导残差网络来估算云下区域。我们提出了一个知识引导的协调模型,该模型基于无云像素的光谱分布将一个卫星收集的反射响应映射到另一个卫星收集。随后在中间层中利用协调后的无云图像作为附加输入,并与自定义损失函数配对,该函数在训练期间共同考虑图像重建质量和传感器间一致性。为了验证模型的性能,我们在多传感器遥感图像基准数据集上进行了大量实验,该数据集由广泛使用的Landsat-8和Sentinel-2图像组成。与最先进的方法相比,结果显示MSE至少提高了22.35%。
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DEAR: Dynamic Electric Ambulance Redeployment Towards Workload Trend Time Series Probabilistic Prediction via Probabilistic Deep Learning Scalable Spatial Analytics and In Situ Query Processing in DaskDB Highway Systems: How Good are They, Really? Harmonization-guided deep residual network for imputing under clouds with multi-sensor satellite imagery
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